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State of the Art

  • Shane Xie
  • Ye Ma
  • Wei Meng
Chapter

Abstract

A comprehensive literature review on biomechatronics input interfaces was carried out to identify the key issues in this field. The main design requirements and development complications were identified and the various approaches used in past interfaces were reviewed. The review begins with a survey of existing biological interfaces designed for use in human assistance and treatment. An overview of EEG and EMG based biomechanical models is also provided. This is followed by a review of the state-of-the-art in biomechanical model-based control strategies, with primary focus on its application to rehabilitation robots. Finally, the reviewed materials are discussed to highlight issues in biomechanics that require further work, and are hence the subject of investigation for this research.

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Copyright information

© Springer International Publishing AG 2017

Authors and Affiliations

  1. 1.School of Electrical and Electronic EngineeringUniversity of LeedsLeedsUnited Kingdom
  2. 2.Department of Mechanical EngineeringThe University of AucklandAucklandNew Zealand
  3. 3.School of Information EngineeringWuhan University of TechnologyWuhanChina
  4. 4.Ningbo UniversityNingboChina

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